Procedural Generation of Algorithm Discovery Tasks in Machine Learning
arXiv cs.LG / 3/19/2026
📰 NewsModels & Research
Key Points
- DiscoGen is a procedural generator of algorithm-discovery tasks for machine learning, enabling automated creation and evaluation of new ML algorithms.
- It addresses key limitations of prior task suites, such as poor evaluation methodologies, data contamination, and saturation of similar problems.
- The generator spans millions of tasks across multiple ML fields, parameterized by a small configuration set, and can be used to optimize algorithm discovery agents (ADAs).
- It includes DiscoBench, a fixed, small benchmark subset for principled ADA evaluation, and supports experiments like prompt optimization of ADAs.
- The project is open-source and hosted at GitHub, inviting researchers to explore new directions in algorithm discovery (https://github.com/AlexGoldie/discogen).
Related Articles
Jeff Bezos reportedly wants $100 billion to buy and transform old manufacturing firms with AI
TechCrunch
[R] Weekly digest: arXiv AI security papers translated for practitioners -- Cascade (cross-stack CVE+Rowhammer attacks on compound AI), LAMLAD (dual-LLM adversarial ML, 97% evasion), OpenClaw (4 vuln classes in agent frameworks)
Reddit r/MachineLearning
My Experience with Qwen 3.5 35B
Reddit r/LocalLLaMA

Cursor’s new coding model Composer 2 is here: It beats Claude Opus 4.6 but still trails GPT-5.4
VentureBeat
Qwen 3.5 122B completely falls apart at ~ 100K context
Reddit r/LocalLLaMA